ADI-20: Arabic Dialect Identification dataset and models
Abstract
We present ADI-20, an extension of the previously published ADI-17 Arabic Dialect Identification (ADI) dataset. ADI-20 covers all Arabic-speaking countries' dialects. It comprises 3,556 hours from 19 Arabic dialects in addition to Modern Standard Arabic (MSA). We used this dataset to train and evaluate various state-of-the-art ADI systems. We explored fine-tuning pre-trained ECAPA-TDNN-based models, as well as Whisper encoder blocks coupled with an attention pooling layer and a classification dense layer. We investigated the effect of (i) training data size and (ii) the model's number of parameters on identification performance. Our results show a small decrease in F1 score while using only 30% of the original training data. We open-source our collected data and trained models to enable the reproduction of our work, as well as support further research in ADI.
Keywords
Cite
@article{arxiv.2511.10070,
title = {ADI-20: Arabic Dialect Identification dataset and models},
author = {Haroun Elleuch and Salima Mdhaffar and Yannick Estève and Fethi Bougares},
journal= {arXiv preprint arXiv:2511.10070},
year = {2025}
}
Comments
Published in Interspeech 2025